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An Ensemble Kalman Filter approach to assess the effects of hydrological variability, water diversion, and meteorological forcing on the total phosphorus concentration in a shallow reservoir

机译:一个合奏卡尔曼过滤方法,以评估水文变异性,进水和气象强迫对浅水库中总磷浓度的影响

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Total phosphorus (TP) is a vitally important water quality index in shallow reservoirs and is closely connected with hydrological variability, anthropogenic water diversion and meteorological forcing. However, it is still unclear to what extent the TP concentration in a complex shallow reservoir system attributes to each type of forcing. To resolve this issue, this study proposed a TP concentration contribution index (TPI) to assess the contribution of each forcing, using the data assimilation (DA) method, the Ensemble Kalman Filter (EnKF), which was applied in the shallow Yuqiao Reservoir, China. The EnKF model was conducted based on the Vollenweider model and logistic regression models with datasets of 1989-2015. The results showed that human-originated activities forcing (water diversion) contributed the maximum TPI (40%), followed by hydrological variability forcing (37%). Finally, meteorological forcing (air temperature and wind included) only accounted for 23%. Furthermore, the seasonal analyses also showed that the TPI of hydrological variability dominated in spring and winter, with 65% and 73% respectively. However, the contributions of meteorological forcing (air temperature and wind) accounted for a larger proportion of 63% and 57% in summer and autumn.The benefit of our EnKF model denoises the Gaussian noise contained in observation and simulation, which offers a chance to isolate and identify even a minor driving factor (i.e., meteorological forcing) from a complex river and lake system with limited data. The study provides a method to assess the influence of direct and indirect forcing on TP concentration in shallow reservoirs from a quantitative perspective. Thus, it may serve as a useful tool for water quality management in water-receiving systems.
机译:总磷(TP)是浅层储层中的重要水质指数,与水文变异性,人体导流和气象迫使密切相关。然而,仍然不清楚复杂的浅层系统属性的TP浓度到每种迫使的程度。为了解决这个问题,本研究提出了使用数据同化(DA)方法,在浅宇桥水库应用的数据同化(DA)方法来评估每个强制贡献指数(TPI)的TP集中贡献指数(TPI),该方法是在浅宇桥水库中应用的集合卡尔曼滤波器(ENKF),中国。 enkf模型是基于Vollenweider模型和Logistic回归模型进行的,其中数据集1989-2015。结果表明,人源性活动强迫(进出水)促使最大TPI(40%),其次是水文变异性强制(37%)。最后,气象迫使(包括空气温度和风)仅占23%。此外,季节性分析还表明,春季和冬季的水文变异性TPI分别为65%和73%。然而,气象迫使(空气温度和风)的贡献占夏季和秋季的比例较大了63%和57%。我们的ENKF模型的利益地表达了观察和仿真中的高斯噪声,提供了机会均衡并识别甚至来自复杂河流和湖泊系统的次要驱动因子(即气象迫使),具有有限的数据。该研究提供了一种评估直接和间接迫使浅层储层中TP浓度的影响的方法。因此,它可以用作水接收系统中水质管理的有用工具。

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